English

Parallel ADMM Algorithm with Gaussian Back Substitution for High-Dimensional Quantile Regression and Classification

Computation 2025-01-14 v1

Abstract

In the field of high-dimensional data analysis, modeling methods based on quantile loss function are highly regarded due to their ability to provide a comprehensive statistical perspective and effective handling of heterogeneous data. In recent years, many studies have focused on using the parallel alternating direction method of multipliers (P-ADMM) to solve high-dimensional quantile regression and classification problems. One efficient strategy is to reformulate the quantile loss function by introducing slack variables. However, this reformulation introduces a theoretical challenge: even when the regularization term is convex, the convergence of the algorithm cannot be guaranteed. To address this challenge, this paper proposes the Gaussian Back-Substitution strategy, which requires only a simple and effective correction step that can be easily integrated into existing parallel algorithm frameworks, achieving a linear convergence rate. Furthermore, this paper extends the parallel algorithm to handle some novel quantile loss classification models. Numerical simulations demonstrate that the proposed modified P-ADMM algorithm exhibits excellent performance in terms of reliability and efficiency.

Keywords

Cite

@article{arxiv.2501.07035,
  title  = {Parallel ADMM Algorithm with Gaussian Back Substitution for High-Dimensional Quantile Regression and Classification},
  author = {Xiaofei Wu and Dingzi Guo and Rongmei Liang and Zhimin Zhang},
  journal= {arXiv preprint arXiv:2501.07035},
  year   = {2025}
}
R2 v1 2026-06-28T21:04:13.215Z